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Multilane First-order Traffic Flow Modelwith Endogenous Representation of Lane-flow Equilibrium

机译:具有车道流平衡的内在表示的多车道一阶交通流模型

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In this study, we develop a multilane first-order traffic flow model for freeway networks. In the model, lane changing is considered as a stochastic behavior that can decrease an individual driver's disutility or cost, and is represented as dynamics toward the equilibrium of lane-flow distribution along with longitudinal traffic dynamics. The proposed method can be differentiated from those in previous studies because in this study, the motivation of lane changing is explicitly considered and it is treated as a utility defined by the current macroscopic traffic state. In addition, the entire process of lane changing is computed macroscopically by an extension of the kinematic wave theory employing IT principle; moreover, in the model framework, the lane-flow equilibrium curve is endogenously generated because of self-motivated lane changes. Furthermore, the parsimonious representation enables parameter calibration using the data collected from conventional loop detectors. The calibration of the data collected at four different sites, including a sag bottleneck, on the Chugoku expressway in Japan reveals that the proposed method can represent the lane-flow distribution of any observation site with high accuracy, and that the estimated parameters can reasonably explain the multilane traffic dynamics and the bottleneck phenomena uphill of sag sections.
机译:在这项研究中,我们开发了高速公路网络的多车道一阶交通流模型。在模型中,换道被认为是一种随机行为,可以减少单个驾驶员的无用或降低成本,并被表示为朝着车流分配均衡的动态以及纵向交通动态。所提出的方法可以与先前的研究区分开来,因为在此研究中,明确考虑了改变车道的动机,并将其视为当前宏观交通状况所定义的效用。另外,通过应用IT原理的运动波理论的扩展,宏观地改变了车道的整个过程。此外,在模型框架中,车道流平衡曲线是由于自发车道变化而内生产生的。此外,简约表示能够使用从常规环路检测器收集的数据进行参数校准。对在中国的中国高速公路上四个不同点(包括下陷瓶颈)处收集到的数据进行的校准表明,该方法可以高精度地表示任何观测点的车道流量分布,并且估计参数可以合理地解释多车道交通动态和下陷路段上坡的瓶颈现象。

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